Machine learning and deep learning in data-driven decision making of drug discovery and challenges in high-quality data acquisition in the pharmaceutical industry.
Sethu Arun KumarThirumoorthy Durai Ananda KumarNarasimha M BeerakaGurubasavaraj Veeranna PujarManisha SinghHandattu Sankara Narayana AkshathaMeduri BhagyalalithaPublished in: Future medicinal chemistry (2021)
Predicting novel small molecule bioactivities for the target deconvolution, hit-to-lead optimization in drug discovery research, requires molecular representation. Previous reports have demonstrated that machine learning (ML) and deep learning (DL) have substantial implications in virtual screening, peptide synthesis, drug ADMET screening and biomarker discovery. These strategies can increase the positive outcomes in the drug discovery process without false-positive rates and can be achieved in a cost-effective way with a minimum duration of time by high-quality data acquisition. This review substantially discusses the recent updates in AI tools as cheminformatics application in medicinal chemistry for the data-driven decision making of drug discovery and challenges in high-quality data acquisition in the pharmaceutical industry while improving small-molecule bioactivities and properties.
Keyphrases
- drug discovery
- small molecule
- machine learning
- deep learning
- big data
- artificial intelligence
- decision making
- electronic health record
- protein protein
- convolutional neural network
- emergency department
- adverse drug
- molecular docking
- single molecule
- adipose tissue
- metabolic syndrome
- type diabetes
- molecular dynamics simulations
- drug induced
- insulin resistance